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Active contour using local region-scalable force with expandable kernel

机译:使用局部区域可缩放力和可扩展内核的活动轮廓

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In this paper, we propose a local region-scalable active contour with expandable kernel for image segmentation. We call it LREK active contour. Our model uses intensity values of pixels on a set of scalable kernels along evolving contour. These kernels are to direct contour front towards object's boundary within an image domain. Key feature of our model is that scale of the kernels increases gradually until the boundary is detected. So, our LREK may reach the boundary faster than some other methods. We compare performance of our LREK to existing region-based models that using local region descriptor. Experimental results show more desirable segmentation outcomes of our method. Our LREK performs effectively in segmenting noisy, concave boundary, non-uniform, and heterogeneous textures objects with a large capture range and fast convergence. Moreover, our Gaussian LREK is able to trace blur or smooth boundary.
机译:在本文中,我们提出了具有可扩展核的局部可缩放活动轮廓,用于图像分割。我们称其为LREK有效轮廓。我们的模型使用沿不断变化的轮廓线的一组可缩放内核上的像素强度值。这些内核将轮廓前沿指向图像域内的对象边界。我们模型的关键特征是核的大小逐渐增加,直到检测到边界为止。因此,我们的LREK可能比其他方法更快地到达边界。我们将LREK的性能与使用局部区域描述符的现有基于区域的模型进行比较。实验结果表明,该方法具有更好的分割效果。我们的LREK在分割噪声范围大,捕获范围广且收敛快的噪点,凹边界,非均匀和异质纹理对象方面表现出色。此外,我们的高斯LREK能够追踪模糊或平滑边界。

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